Stochastic partial differential equations (SPDEs) are the mathematical tool of choice for modelling spatiotemporal PDE-dynamics under the influence of randomness. Based on the notion of mild solution of an SPDE, we introduce a novel neural architecture to learn solution operators of PDEs with (possibly stochastic) forcing from partially observed data. The proposed Neural SPDE model provides an extension to two popular classes of physics-inspired architectures. On the one hand, it extends Neural CDEs and variants -- continuous-time analogues of RNNs -- in that it is capable of processing incoming sequential information arriving at arbitrary spatial resolutions. On the other hand, it extends Neural Operators -- generalizations of neural networks to model mappings between spaces of functions -- in that it can parameterize solution operators of SPDEs depending simultaneously on the initial condition and a realization of the driving noise. By performing operations in the spectral domain, we show how a Neural SPDE can be evaluated in two ways, either by calling an ODE solver (emulating a spectral Galerkin scheme), or by solving a fixed point problem. Experiments on various semilinear SPDEs, including the stochastic Navier-Stokes equations, demonstrate how the Neural SPDE model is capable of learning complex spatiotemporal dynamics in a resolution-invariant way, with better accuracy and lighter training data requirements compared to alternative models, and up to 3 orders of magnitude faster than traditional solvers.
翻译:软化部分差异方程式(SPDEs)是随机影响下模拟超时PDE动力学的数学选择工具。根据SPDE的轻度溶液概念,我们引入了一个新的神经结构,学习PDE的溶液操作器,其(可能具有随机性)从部分观测的数据中被强迫。拟议的神经SPDE模型将扩展至受物理启发的建筑的两个受欢迎的类别。一方面,它扩展神经CDE和变体 -- -- RENS的连续时间类比 -- -- 因为它能够处理以任意的空间分辨率接收的顺序信息。另一方面,它扩展神经操作器 -- -- 神经网络的常规化,以模拟功能空间之间的绘图。因为它可以同时根据初始条件和驱动噪音的实现而将SPDES的溶液操作器参数化。通过在光谱域内执行操作,我们展示了如何用两种方式来评估Neuralive SPDE,要么是调用ODES的模型解析器(在光谱谱谱级中模拟一个更快速的模型,在Sandrial-deal-deal-deal-deal-destrational-deal-deal-deal saliversal salistry sal syal syal sypal),或者通过一个固定的解算式的Syal-modal-to pal-lipal-modal-sial-sial)。